Categories: AI/ML News

New approach uses generative AI to imitate human motion

An international group of researchers has created a new approach to imitating human motion by combining central pattern generators (CPGs) and deep reinforcement learning (DRL). The method not only imitates walking and running motions but also generates movements for frequencies where motion data is absent, enables smooth transition movements from walking to running, and allows for adaptation to environments with unstable surfaces.
AI Generated Robotic Content

Share
Published by
AI Generated Robotic Content

Recent Posts

A Complete Guide to Matrices for Machine Learning with Python

Matrices are a key concept not only in linear algebra but also with regard to…

13 hours ago

An Efficient and Streaming Audio Visual Active Speaker Detection System

This paper delves into the challenging task of Active Speaker Detection (ASD), where the system…

13 hours ago

Benchmarking Amazon Nova and GPT-4o models with FloTorch

Based on original post by Dr. Hemant Joshi, CTO, FloTorch.ai A recent evaluation conducted by…

13 hours ago

How Google Cloud measures its climate impact through Life Cycle Assessment (LCA)

As AI creates opportunities for business growth and societal benefits, we’re working to reduce their…

13 hours ago

Sony testing AI to drive PlayStation characters

PlayStation characters may one day engage you in theoretically endless conversations, if a new internal…

14 hours ago

15-inch MacBook Air (M4, 2025) Review: Bluer and Better

The latest 15-inch MacBook Air is bluer and better than ever before—and it dropped in…

14 hours ago